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چکیده
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To successfully implement low-salinity polymer flooding in heterogeneous heavy oil reservoirs,
it is crucial to comprehend the interactions between salinity, polymer properties, and reservoir
characteristics. Artificial intelligence-driven proxy models can assist in identifying critical parameters
and predicting performance outcomes, thereby enabling optimizing field-scale applications of this
technique in heterogeneous heavy oil reservoirs. This study focused on developing a proxy model by
coupling neural network and particle swarm optimization algorithms to analyze low-salinity polymer
flooding. The model, trained with data from a pilot-scale dynamic simulator, achieved high predictive
accuracy, featuring a regression value of 0.996 and a mean square error of 0.0011. It effectively
forecasts key performance indicators such as oil recovery, water cut, and well bottom-hole pressure.
The model identified injection rate as the most influential factor and polymer concentration as the
least significant. Through the optimization of input parameters, the study established optimized
values for the injection rate, injected fluid salinity, and polymer concentration at 1450 (bbl/day), 4000
ppm, and 1500 ppm, respectively. The optimization considers economic viability by maximizing net
present value and addresses practical challenges of maintaining injectivity over time, making it a
valuable tool for enhancing water-based recovery methods in oil field development.
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